- 表具体说明
- Impala - 创建表语句
- Impala - 插入语句
- Impala - 选择语句
- Impala - 描述语句
- Impala - 更改表
- Impala - 删除一个表
- Impala - 截断表
- Impala - 显示表
- Impala - 创建视图
- Impala - 改变视图
- Impala - 放下视图
- Impala - 条款
- Impala - 按条款排序
- Impala - Group By 子句
- Impala - 拥有子句
- Impala - 限制条款
- Impala - 抵消条款
- Impala - 联合条款
- Impala - 带子句
- Impala - 独特的运算符
- 黑斑羚有用的资源
- Impala - 快速指南
- Impala - 有用的资源
- Impala - 讨论
Impala - 带子句
如果查询太复杂,我们可以为复杂部分定义别名,并使用 Impala 的with子句将它们包含在查询中。
句法
以下是 Impala 中with子句的语法。
with x as (select 1), y as (select 2) (select * from x union y);
例子
假设数据库my_db中有一个名为customer的表,其内容如下 -
[quickstart.cloudera:21000] > select * from customers; Query: select * from customers +----+----------+-----+-----------+--------+ | id | name | age | address | salary | +----+----------+-----+-----------+--------+ | 1 | Ramesh | 32 | Ahmedabad | 20000 | | 9 | robert | 23 | banglore | 28000 | | 2 | Khilan | 25 | Delhi | 15000 | | 4 | Chaitali | 25 | Mumbai | 35000 | | 7 | ram | 25 | chennai | 23000 | | 6 | Komal | 22 | MP | 32000 | | 8 | ram | 22 | vizag | 31000 | | 5 | Hardik | 27 | Bhopal | 40000 | | 3 | kaushik | 23 | Kota | 30000 | +----+----------+-----+-----------+--------+ Fetched 9 row(s) in 0.59s
同样,假设我们有另一个表名为employee,其内容如下:
[quickstart.cloudera:21000] > select * from employee; Query: select * from employee +----+---------+-----+---------+--------+ | id | name | age | address | salary | +----+---------+-----+---------+--------+ | 3 | mahesh | 54 | Chennai | 55000 | | 2 | ramesh | 44 | Chennai | 50000 | | 4 | Rupesh | 64 | Delhi | 60000 | | 1 | subhash | 34 | Delhi | 40000 | +----+---------+-----+---------+--------+ Fetched 4 row(s) in 0.59s
以下是 Impala 中with子句的示例。在此示例中,我们使用with子句显示年龄大于 25 岁的员工和客户的记录。
[quickstart.cloudera:21000] > with t1 as (select * from customers where age>25), t2 as (select * from employee where age>25) (select * from t1 union select * from t2);
执行时,上述查询给出以下输出。
Query: with t1 as (select * from customers where age>25), t2 as (select * from employee where age>25) (select * from t1 union select * from t2) +----+---------+-----+-----------+--------+ | id | name | age | address | salary | +----+---------+-----+-----------+--------+ | 3 | mahesh | 54 | Chennai | 55000 | | 1 | subhash | 34 | Delhi | 40000 | | 2 | ramesh | 44 | Chennai | 50000 | | 5 | Hardik | 27 | Bhopal | 40000 | | 4 | Rupesh | 64 | Delhi | 60000 | | 1 | Ramesh | 32 | Ahmedabad | 20000 | +----+---------+-----+-----------+--------+ Fetched 6 row(s) in 1.73s